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Explore the important questions facing AI today, including the role of embodiment, genetics, perception, culture, interpretations, and falsifiable computation. Discover insights into the limitations and possibilities of AI and how it can be intelligent in its own right.
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A New Artificial Intelligence 7 Kevin Warwick
Issues of Modern AI • We will look here at some of the important questions facing AI today • We will open up some of the directions being taken • We will attempt to move away from the restrictions imposed by Classical AI
Brains • A brain has different neuronal structures each with a specialised role – sensory, motor, inter • Neurons communicate through BINARY (not analogue) codes • We know something about the physical - chemical aspects of the brain • We know almost nothing about how memories are encoded or faces are recognised
Innate Knowledge • Can learning occur on a blank slate? • Must there be some prior bias? • Are memories inherited? • Meaningful convergence of ANNs depends on number of neurons + topology + learning • Is this also true of a brain? • Are there hard wired cognitive biases?
Genetics/emergence • Darwinian (natural) selection – shapes individual behaviours • AND/OR • Lamarckian evolution – offspring inherit acquired characteristics (e.g. giraffe) • LEAD TO • Strengthening of particular circuits in the brain & weakening of others
Plato – unsupervised learning? • How can you enquire, Socrates, into that which you do not already know? • What will you put forth as the subject of the enquiry? • And if you find out what you want, how will you ever know that this is what you did not know? • i.e. how can we know we are someplace when we do not know where we are going?
Questions • Perceptions depend on distributed neural codes – how are these combined? • What we perceive is highly dependent on how our brain attempts to interpret a situation/scene – how? • How does an individual acquire language? • How does a brain index temporally related information?
Agents + Emergence • Idea - The mind is organised into sets of specialised functional units (Minsky) • Modular theories good for agents • Emergent globally intelligent behaviour arises from the cooperation of large numbers of agents • Supported by fMRI scans
Piaget • Humans assimilate external phenomena according to our present understanding • We accommodate our understanding to the demands of the phenomena
Kant • Schemata – apriori structure used to organise experience of the external world • Observation is not passive and neutral but active and interpretive
Perception • Perceived information never fits precisely into our schemata • Depends on I/O devices – in humans and robots • With different I/O the real world will be perceived differently • Each entity has a different concept of reality • There is NO absolute reality! (Berkeley)
Embodiment in cognition • Classical AI – instantiation of a physical symbol system is irrelevant to its performance – structure is important (Brain in a vat) • New AI - Intelligent action requires a physical embodiment that allows the entity to be integrated in the world • Present day robot I/O limited – requires more complexity in interfacing
Culture • Classical AI – Individual mind is the sole source of intelligence • But knowledge is a social construct – an understanding of the social context of knowledge and behaviour is also important (memes!)
Interpretations - Communication • Symbols are used in context – a domain has different interpretations, depending on the goals • Sign interpretation – coding system • The meaning of a symbol is understood in the context of its role as an interpretor
Falsifiable Computation • Any number of confirming experiments are not sufficient for confirmation of a theory • Scientific theories must be falsifiable • There must exist circumstances under which a model is a poor approximant • Many computational models are not falsifiable – universal machines! • Need computation that is falsifiable
Let’s Move On • Classical AI – (Hobbes/Locke/Aristotle) – intelligent processes conform to universal laws and are understandable/modelable • Converse (Winograd/Penrose/Weisenbaum) – important aspects of intelligence cannot be modelled • A model/simulation is not the real thing • The only ‘exact’ simulation of a human brain would be that specific human brain and no other – even then it would need to be in its place/time
Differences • Just because something is different does not make it worse • A simulation of a human brain could be more/less intelligent/conscious/self-aware/understanding • Models/simulations are used to explore, explain & predict – if a model is proven to be accurate for this then that’s just fine
Comments on Intelligence • As long as we understand the basics of what intelligence is, that is sufficient • We should not be bogged down by trying to copy exactly the functioning of the human brain, interesting though that might be • More interesting is to create entities that are intelligent in their own right
Next • Growing Brains – Biological AI
Contact Information • Web site: www.kevinwarwick.com • Email: k.warwick@reading.ac.uk • Tel: (44)-1189-318210 • Fax: (44)-1189-318220 • Professor Kevin Warwick, Department of Cybernetics, University of Reading, Whiteknights, Reading, RG6 6AY,UK